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In this paper, we present a new hashing method to learn compact binary codes for highly efficient image retrieval on large-scale datasets. While the complex image appearance variations still pose a great challenge to reliable retrieval, in light of the recent progress of Convolutional Neural Networks (CNNs) in learning robust image representation on various vision tasks, this paper proposes a novel Deep Supervised Hashing (DSH) method to learn compact similarity-preserving binary code for the huge body of image data. Specifically, we devise a CNN architecture that takes pairs of images (similar/dissimilar) as training inputs and encourages the output of each image to approximate discrete values (e.g. +1/-1). To this end, a loss function is elaborately designed to maximize the discriminability of the output space by encoding the supervised information from the input image pairs, and simultaneously imposing regularization on the real-valued outputs to approximate the desired discrete values. For image retrieval, new-coming query images can be easily encoded by propagating through the network and then quantizing the network outputs to binary codes representation. Extensive experiments on two large scale datasets CIFAR-10 and NUS-WIDE show the promising performance of our method compared with the state-of-the-arts.
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Haomiao Liu
Anhui Medical University
Ruiping Wang
Institute of Computing Technology
Shiguang Shan
Beijing Institute of Technology
Chinese Academy of Sciences
University of Chinese Academy of Sciences
Institute of Computing Technology
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Liu et al. (Wed,) studied this question.
synapsesocial.com/papers/69da92aca6045d71bfa3d1c3 — DOI: https://doi.org/10.1109/cvpr.2016.227